package 'rattle
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Package ‘rattle’September 5, 2017
Type Package
Title Graphical User Interface for Data Science in R
Version 5.1.0
Date 2017-09-04
Depends R (>= 2.13.0)
Imports stats, utils, ggplot2, grDevices, graphics, magrittr, methods,RGtk2, stringi, stringr, tidyr, dplyr, cairoDevice, XML,rpart.plot
Suggests pmml (>= 1.2.13), bitops, colorspace, ada, amap, arules,arulesViz, biclust, cba, cluster, corrplot, descr, doBy, e1071,ellipse, fBasics, foreign, fpc, gdata, ggdendro, ggraptR,gplots, grid, gridExtra, gtools, gWidgetsRGtk2, hmeasure,Hmisc, kernlab, Matrix, mice, nnet, odfWeave, party, playwith,plyr, psych, randomForest, rattle.data, RColorBrewer, readxl,reshape, rggobi, ROCR, RODBC, rpart, SnowballC, survival,timeDate, tm, verification, wskm, RGtk2Extras, xgboost
Description The R Analytic Tool To Learn Easily (Rattle) provides aGnome (RGtk2) based interface to R functionality for data science.The aim is to provide a simple and intuitive interfacethat allows a user to quickly load data from a CSV file(or via ODBC), transform and explore the data,build and evaluate models, and export models as PMML (predictivemodelling markup language) or as scores. All of this with knowing littleabout R. All R commands are logged and commented through the log tab. Thus theyare available to the user as a script file or as an aide for the user tolearn R or to copy-and-paste directly into R itself.Rattle also exports a number of utilityfunctions and the graphical user interface, invoked as rattle(), doesnot need to be run to deploy these.
License GPL (>= 2)
LazyLoad yes
LazyData yes
URL http://rattle.togaware.com/
1
2 R topics documented:
NeedsCompilation no
Author Graham Williams [aut, cph, cre],Mark Vere Culp [cph],Ed Cox [ctb],Anthony Nolan [ctb],Denis White [cph],Daniele Medri [ctb],Akbar Waljee [ctb] (OOB AUC for Random Forest),Brian Ripley [cph] (print.summary.nnet),Jose Magana [ctb] (ggpairs plots),Surendra Tipparaju [ctb] (initial RevoScaleR/XDF),Durga Prasad Chappidi [ctb] (initial RevoScaleR/XDF),Dinesh Manyam Venkata [ctb] (initial RevoScaleR/XDF),Mrinal Chakraborty [ctb] (initial RevoScaleR/XDF),Fang Zhou [ctb] (initial xgboost)
Maintainer Graham Williams <Graham.Williams@togaware.com>
Repository CRAN
Date/Publication 2017-09-05 07:31:14 UTC
R topics documented:acquireAuditData . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 3asRules . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 4asRules.rpart . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 5audit . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 6binning . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 7calcInitialDigitDistr . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 8calculateAUC . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 8centers.hclust . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 9comcat . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 10drawTreeNodes . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 11drawTreesAda . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 12errorMatrix . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 13evaluateRisk . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 14fancyRpartPlot . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 15genPlotTitleCmd . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 16ggVarImp . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 17listAdaVarsUsed . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 18listTreesAda . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 18listVersions . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 19modalvalue . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 20plotOptimalLine . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 20plotRisk . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 21printRandomForests . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 23randomForest2Rules . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 24rattle . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 25
acquireAuditData 3
rattle.print.summary.multinom . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 26rattleInfo . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 27rescale.by.group . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 28riskchart . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 29savePlotToFile . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 32setupDataset . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 33treeset.randomForest . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 33weather . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 34whichNumerics . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 36
Index 37
acquireAuditData Generate the audit dataset.
Description
Rattle uses an artificial dataset for demonstration purposes. This function retrieves the source dataftp://ftp.ics.uci.edu/pub/machine-learning-databases/adult/adult.data and then trans-forms the data in a variety of ways.
Usage
acquireAuditData(write.to.file=FALSE)
Arguments
write.to.file Whether to generate a colleciton of files based on the data. The files generatedinclude: audit.csv, audit.Rdata, audit.arf, and audit\_missing.csv
Details
See the function definition for details of the processing done on the data downloaded from the UCIrepository.
Value
By default the function returns a data frame containing the audit dataset. If write.to.file is TRUEthen the data frame is returned invisibly.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
4 asRules
See Also
audit, rattle.
asRules List the rules corresponding to the rpart decision tree
Description
Display a list of rules for an rpart decision tree.
Usage
asRules(model, compact=FALSE, ...)
Arguments
model an rpart model.
compact whether to list cateogricals compactly.
... further arguments passed to or from other methods.
Details
Traverse a decision tree to generate the equivalent set of rules, one rule for each path from the rootnode to a leaf node.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
Examples
## Not run: asRules.rpart(my.rpart)
asRules.rpart 5
asRules.rpart List the rules corresponding to the rpart decision tree
Description
Display a list of rules for an rpart decision tree.
Usage
## S3 method for class 'rpart'asRules(model, compact=FALSE, ...)
Arguments
model an rpart model.
compact whether to list cateogricals compactly.
... further arguments passed to or from other methods.
Details
Traverse a decision tree to generate the equivalent set of rules, one rule for each path from the rootnode to a leaf node.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
Examples
## Not run: asRules.rpart(my.rpart)
6 audit
audit Sample dataset to illustrate Rattle functionality.
Description
The audit dataset is an artificially constructed dataset that has some of the characteristics of a truefinancial audit dataset for modelling productive and non-productive audits of a person’s financialstatement. A productive audit is one which identifies errors or inaccuracies in the information pro-vided by a client. A non-productive audit is usually an audit which found all supplied informationto be in order.
The audit dataset is used to illustrate binary classification. The target variable is identified asTARGET_Adjusted.
The dataset is quite small, consisting of just 2000 entities. Its primary purpose is to illustratemodelling in Rattle, so a minimally sized dataset is suitable.
The dataset itself is derived from publicly available data (which has nothing to do with audits).
Format
A data frame. In line with data mining terminology we refer to the rows of the data frame (or theobservations) as entities. The columns are refered to as variables. The entities represent people inthis case. We describe the variables here:
ID This is a unique identifier for each person.
Age The age.
Employment The type of employment.
Education The highest level of education.
Marital Current marital status.
Occupation The type of occupation.
Income The amount of income declared.
Gender The persons gender.
Deductions Total amount of expenses that a person claims in their financial statement.
Hours The average hours worked on a weekly basis.
IGNORE_Accounts The main country in which the person has most of their money banked. Notethat the variable name is prefixed with IGNORE. This is recognised by Rattle as the defaultrole for this variable.
RISK_Adjustment This variable records the monetary amount of any adjustment to the person’sfinancial claims as a result of a productive audit. This variable, which should not be treated asan input variable, is thus a measure of the size of the risk associated with the person.
TARGET_Adjusted The target variable for modelling (generally for classification modelling). Thisis a numeric field of class integer, but limited to 0 and 1, indicating non-productive and pro-ductive audits, respectively. Productive audits are those that result in an adjustment beingmade to a client’s financial statement.
binning 7
binning Perform binning over numeric data
Description
Perform binning.
Usage
binning(x, bins=4, method=c("quantile", "wtd.quantile", "kmeans"),labels=NULL, ordered=TRUE, weights=NULL)
Arguments
x the numeric data to bin.
bins the number of bins to use.
method whether to use "quantile", weighted quantile "wtd.quantile" or "kmeans" bin-ning.
labels the labels or names to use for each of the bins.
ordered whether to build an ordered factor or not.
weights vector of numeric weights for each observation for weighted quantile binning.
Details
Bin the provided nmeric data into the specified number of bins using one of the supported methods.The bins will have the names specified by labels, if supplied. The result can optionally be an orderedfactor.
Value
A factor is returned.
Author(s)
Daniele Medri and Graham Williams
References
Package home page: http://rattle.togaware.com
8 calculateAUC
calcInitialDigitDistr Generate a frequency count of the initial digits
Description
In the context of Benford’s Law calculate the distribution of the frequencies of the first digit of thenumbers supplied as the argument.
Usage
calcInitialDigitDistr(l, digit=1, len=1,sp=c("none", "positive", "negative"))
Arguments
l a vector of numbers.
digit the digit to generate frequencies for.
len The number of digits.
sp whether and how to split the digits.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
calculateAUC Determine area under a curve (e.g. a risk or recall curve) of a riskchart
Description
Given the evaluation returned by evaluateRisk, for example, calculate the area under the risk orrecall curves, to use as a metric to compare the performance of a model.
Usage
calculateAUC(x, y)
Arguments
x a vector of values for the x points.
y a vector of values for the y points.
centers.hclust 9
Details
The area is returned.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
See Also
evaluateRisk.
Examples
## this is usually used in the context of the evaluateRisk function## Not run: ev <- evaluateRisk(predicted, actual, risk)
## imitate this output hereev <- data.frame(Caseload=c(1.0, 0.8, 0.6, 0.4, 0.2, 0),
Precision=c(0.15, 0.18, 0.21, 0.25, 0.28, 0.30),Recall=c(1.0, 0.95, 0.80, 0.75, 0.5, 0.0),Risk=c(1.0, 0.98, 0.90, 0.77, 0.30, 0.0))
## Calculate the areas unde the Risk and the Recall curves.calculateAUC(ev$Caseload, ev$Risk)calculateAUC(ev$Caseload, ev$Recall)
centers.hclust List Cluster Centers for a Hierarchical Cluster
Description
Generate a matrix of centers from a hierarchical cluster.
Usage
centers.hclust(x, object, nclust=10, use.median=FALSE)
Arguments
x The data used to build the cluster.
object A hclust object.
nclust Number of clusters.
use.median Use meadion instead of mean.
10 comcat
Details
For the specified number of clusters, cut the hierarchical cluster appropriately to that number ofclusters, and return the mean (or median) of each resulting cluster.
Author(s)
Daniele Medri and <Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
comcat Echo data in a human readable form.
Description
Format data in the most appropriate human readable form.
Usage
comcat(x, ...)
Arguments
x object.
... additional arguments passed on to format.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
Examples
comcat(dim(iris))
drawTreeNodes 11
drawTreeNodes Draw nodes of a decision tree
Description
Draw the nodes of a decision tree
Usage
drawTreeNodes(tree, cex = par("cex"), pch = par("pch"),size = 4 * cex, col = NULL, nodeinfo = FALSE,units = "", cases = "obs",digits = getOption("digits"),decimals = 2,print.levels = TRUE, new = TRUE)
Arguments
tree an rpart decision tree.
cex .
pch .
size .
col .
nodeinfo .
units .
cases .
digits .
decimals the number of decimal digits to include in numeric split nodes.
print.levels .
new .
Details
A variation of draw.tree() from the maptree package.
Author(s)
<Graham.Williams@togaware.com>, Denis White
References
Package home page: http://rattle.togaware.com
12 drawTreesAda
Examples
## this is usually used in the context of the plotRisk function## Not run: drawTreeNodes(rpart(Species ~ ., iris))
drawTreesAda Draw trees from an Ada model
Description
Using the Rattle drawTreeNodes, draw a selection of Ada trees.
Usage
drawTreesAda(model, trees=0, title="")
Arguments
model an ada model.
trees The list of trees to draw. Use 0 to draw all trees.
title An option title to add.
Details
Using Rattle’s drawTreeNodes underneath, a plot for each of the specified trees from an Ada modelwill be displayed.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
Examples
## Not run: drawTreesAda(ds.ada)
errorMatrix 13
errorMatrix Generate an error matrix from actua and predicted data.
Description
An error matrix reports the true/false potisitve/negative rates.
Usage
errorMatrix(actual,predicted,percentage=TRUE,digits=ifelse(percentage,1,3),count=FALSE)
Arguments
actual a vector of true values.
predicted a vector of predicted values.
percentage return percentages.
digits the number of digits to round results.
count return counts.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
Examples
## Not run: errorMatrix(model)
14 evaluateRisk
evaluateRisk Summarise the performance of a data mining model
Description
By taking predicted values, actual values, and measures of the risk associated with each case, gen-erate a summary that groups the distinct predicted values, calculating the accumulative percentageCaseload, Recall, Risk, Precision, and Measure.
Usage
evaluateRisk(predicted, actual, risks)
Arguments
predicted a numeric vector of probabilities (between 0 and 1) representing the probabilityof each entity being a 1.
actual a numeric vector of classes (0 or 1).
risks a numeric vector of risk (e.g., dollar amounts) associated with each entity thathas a acutal of 1.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
See Also
plotRisk.
Examples
## simulate the data that is typical in data mining
## we often have only a small number of positive known casecases <- 1000actual <- as.integer(rnorm(cases) > 1)adjusted <- sum(actual)nfa <- cases - adjusted
## risks might be dollar values associated adjusted casesrisks <- rep(0, cases)risks[actual==1] <- round(abs(rnorm(adjusted, 10000, 5000)), 2)
fancyRpartPlot 15
## our models will generated a probability of a case being a 1predicted <- rep(0.1, cases)predicted[actual==1] <- predicted[actual==1] + rnorm(adjusted, 0.3, 0.1)predicted[actual==0] <- predicted[actual==0] + rnorm(nfa, 0.1, 0.08)predicted <- signif(predicted)
## call upon evaluateRisk to generate performance summaryev <- evaluateRisk(predicted, actual, risks)
## have a look at the first few and last fewhead(ev)tail(ev)
## the performance is usually presented as a Risk Chart## under the CRAN MS/Windows this causes a problem, so don't run for now## Not run: plotRisk(ev$Caseload, ev$Precision, ev$Recall, ev$Risk)
fancyRpartPlot A wrapper for plotting rpart trees using prp
Description
Plots a fancy RPart decision tree using the pretty rpart plotter.
Usage
fancyRpartPlot(model, main="", sub, caption, palettes, type=2, ...)
Arguments
model an rpart object.
main title for the plot.
sub sub title for the plot. The default is a Rattle string with date, time and username.
caption caption for bottom right of plot.
palettes a list of sequential palettes names. As supported by RColorBrewer::brewer.palthe available names are Blues BuGn BuPu GnBu Greens Greys Oranges OrRdPuBu PuBuGn PuRd Purples RdPu Reds YlGn YlGnBu YlOrBr YlOrRd.
type the type of plot to generate (2).
... additional arguments passed on to prp.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
16 genPlotTitleCmd
Examples
## Use rpart to build a decision tree.
## Not run: library(rpart)
## Set up the data for modelling.
set.seed(42)ds <- weathertarget <- "RainTomorrow"risk <- "RISK_MM"ignore <- c("Date", "Location", risk)vars <- setdiff(names(ds), ignore)nobs <- nrow(ds)form <- formula(paste(target, "~ ."))train <- sample(nobs, 0.7*nobs)test <- setdiff(seq_len(nobs), train)actual <- ds[test, target]risks <- ds[test, risk]
# Build the model.
model <- rpart(form, data=ds[train, vars])
## Plot the model.
fancyRpartPlot(model)
## Choose different colours
fancyRpartPlot(model, palettes=c("Greys", "Oranges"))## End(Not run)
genPlotTitleCmd Generate a string to add a title to a plot
Description
Generate a string that is intended to be eval’d that will add a title and sub-title to a plot. The string isa call to title, supplying the given arguments, pasted together, as the main title, and generating asub-title that begins with ‘Rattle’ and continues with the current date and time, and finishes with thecurrent user’s username. This is used internally in Rattle to adorn a plot with relevant information,but may be useful outside of Rattle.
Usage
genPlotTitleCmd(..., vector=FALSE)
ggVarImp 17
Arguments
... one or more strings that will be pasted together to form the main title.
vector whether to return a vector as the result.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
See Also
eval, title, plotRisk.
Examples
# generate some random plotplot(rnorm(100))
# generate the string representing the command to add titlestl <- genPlotTitleCmd("Sample Plot of", "No Particular Importance")
# cause the string to be executed as an R commandeval(parse(text=tl))
ggVarImp Model.
Description
Model.
Usage
ggVarImp(model, ...)
Arguments
model object.
... arguments passed on.
Author(s)
<Graham.Williams@togaware.com>
18 listTreesAda
References
Package home page: http://rattle.togaware.com
Examples
## Not run: ggVarImp(model)
listAdaVarsUsed List the variables used by an adaboost model
Description
Returns a list of the variables used and their frequencies.
Usage
listAdaVarsUsed(model)
Arguments
model an rpart object.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
listTreesAda List trees from an Ada model
Description
Display the textual representation of a selection of Ada trees.
Usage
listTreesAda(model, trees=0)
Arguments
model an ada model.
trees The list of trees to list. Use 0 to list all trees.
listVersions 19
Details
Using rpart’s print method display each of the specified trees from an Ada model.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
Examples
## Not run: listTreesAda(ds.ada)
listVersions Versions of Installed Packages
Description
Generate a list of packages installed and their version number.
Usage
listVersions(file="", ...)
Arguments
file a character string naming a file or a connection open for writing. ’""’ indicatesoutput to the console.
... arguments to write.csv.
Details
This function is useful in reporting problems or bugs, to ensure there is a clear match of R packageversions between the system exhibiting the issue and the test system replicating the issue.
By default the information is written to the console in a comma separated form, that is ideallydesigned to be written to a CSV file for emailing.
Author(s)
<Graham.Williams@togaware.com>
See Also
write.csv
20 plotOptimalLine
modalvalue Calculate the mode of a vector, array or list.
Description
The mode is the most common or modal value of a list.
Usage
modalvalue(x, na.rm=FALSE)
Arguments
x A vector, array or list.
na.rm Whether to remove missing values.
Details
This function calculates the mode of a vector, array or list (lists are flattened). This code originatedfrom an anonymous post on the R Wiki.
plotOptimalLine Plot three lines on a risk chart, one vertical and two horizontal
Description
Plots a a vertical line at x up to max of y1 and y2, then horizontal from this line at y1 and y2.Intended for plotting on a plotRisk.
Usage
plotOptimalLine(x, y1, y2, pr = NULL, colour = "plum", label = NULL)
Arguments
x location of vertical line.
y1 location of one horizontal line.
y2 location of other horizontal line.
pr Aprint a percentage at this point.
colour of the line.
label at bottom of line.
Details
Intended to plot an optimal line on a Risk Chart as plotted by plotRisk.
plotRisk 21
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
See Also
plotRisk.
Examples
## this is usually used in the context of the plotRisk function## Not run: ev <- evaluateRisk(predicted, actual, risk)
## imitate this output hereev <- NULLev$Caseload <- c(1.0, 0.8, 0.6, 0.4, 0.2, 0)ev$Precision <- c(0.15, 0.18, 0.21, 0.25, 0.28, 0.30)ev$Recall <- c(1.0, 0.95, 0.80, 0.75, 0.5, 0.0)ev$Risk <- c(1.0, 0.98, 0.90, 0.77, 0.30, 0.0)
## plot the Risk ChartplotRisk(ev$Caseload, ev$Precision, ev$Recall, ev$Risk,
chosen=60, chosen.label="Pr=0.45")
## plot the optimal pointplotOptimalLine(40, 77, 75, colour="maroon")
plotRisk Plot a risk chart
Description
Plots a Rattle Risk Chart. Such a chart has been developed in a practical context to present theperformance of data mining models to clients, plotting a caseload against performance, allowing aclient to see the tradeoff between coverage and performance.
Usage
plotRisk(cl, pr, re, ri = NULL, title = NULL,show.legend = TRUE, xleg = 60, yleg = 55,optimal = NULL, optimal.label = "", chosen = NULL, chosen.label = "",include.baseline = TRUE, dev = "", filename = "", show.knots = NULL,show.lift=TRUE, show.precision=TRUE,risk.name = "Risk", recall.name = "Recall",precision.name = "Precision")
22 plotRisk
Arguments
cl a vector of caseloads corresponding to different probability cutoffs. Can beeither percentages (between 0 and 100) or fractions (between 0 and 1).
pr a vector of precision values for each probability cutoff. Can be either percent-ages (between 0 and 100) or fractions (between 0 and 1).
re a vector of recall values for each probability cutoff. Can be either percentages(between 0 and 100) or fractions (between 0 and 1).
ri a vector of risk values for each probability cutoff. Can be either percentages(between 0 and 100) or fractions (between 0 and 1).
title the main title to place at the top of the plot.
show.legend whether to display the legend in the plot.
xleg the x coordinate for the placement of the legend.
yleg the y coordinate for the placement of the legend.
optimal a caseload (percentage or fraction) that represents an optimal performance pointwhich is also plotted. If instead the value is TRUE then the optimal point is iden-tified internally (maximum valud for (recall-casload)+(risk-caseload))and plotted.
optimal.label a string which is added to label the line drawn as the optimal point.
chosen a caseload (percentage or fraction) that represents a user chosen optimal perfor-mance point which is also plotted.
chosen.label a string which is added to label the line drawn as the chosen point.include.baseline
if TRUE (the default) then display the diagonal baseline.
dev a string which, if supplied, identifies a device type as the target for the plot. Thismight be one of wmf (for generating a Windows Metafile, but only available onMS/Windows), pdf, or png.
filename a string naming a file. If dev is not given then the filename extension is used toidentify the image format as one of those recognised by the dev argument.
show.knots a vector of caseload values at which a vertical line should be drawn. These mightcorrespond, for example, to individual paths through a decision tree, illustratingthe impact of each path on the caseload and performance.
show.lift whether to label the right axis with lift.
show.precision whether to show the precision plot.
risk.name a string used within the plot’s legend that gives a name to the risk. Often the riskis a dollar amount at risk from a fraud or from a bank loan point of view, so thedefault is Revenue.
recall.name a string used within the plot’s legend that gives a name to the recall. The recallis often the percentage of cases that are positive hits, and in practise these mightcorrespond to known cases of fraud or reviews where some adjustment to per-haps a incom tax return or application for credit had to be made on reviewingthe case, and so the default is Adjustments.
precision.name a string used within the plot’s legend that gives a name to the precision. Acommon name for precision is Strike Rate, which is the default here.
printRandomForests 23
Details
Caseload is the percentage of the entities in the dataset covered by the model at a particular prob-ability cutoff, so that with a cutoff of 0, all (100%) of the entities are covered by the model. Witha cutoff of 1 (0%) no entities are covered by the model. A diagonal line is drawn to represent abaseline random performance. Then the percentage of positive cases (the recall) covered for a par-ticular caseload is plotted, and optionally a measure of the percentage of the total risk that is alsocovered for a particular caseload may be plotted. Such a chart allows a user to select an appropriatetradeoff between caseload and performance. The charts are similar to ROC curves. The precision(i.e., strike rate) is also plotted.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
See Also
evaluateRisk, genPlotTitleCmd.
Examples
## this is usually used in the context of the evaluateRisk function## Not run: ev <- evaluateRisk(predicted, actual, risk)
## imitate this output hereev <- NULLev$Caseload <- c(1.0, 0.8, 0.6, 0.4, 0.2, 0)ev$Precision <- c(0.15, 0.18, 0.21, 0.25, 0.28, 0.30)ev$Recall <- c(1.0, 0.95, 0.80, 0.75, 0.5, 0.0)ev$Risk <- c(1.0, 0.98, 0.90, 0.77, 0.30, 0.0)
## plot the Risk ChartplotRisk(ev$Caseload, ev$Precision, ev$Recall, ev$Risk,
chosen=60, chosen.label="Pr=0.45")
## Add a titleeval(parse(text=genPlotTitleCmd("Sample Risk Chart")))
printRandomForests Print a representation of the Random Forest models to the console
24 randomForest2Rules
Description
A randomForest model, by default, consists of 500 decision trees. This function walks through eachtree and generates a set of rules which are printed to the console. This takes a considerable amountof time and is provided for users to access the actual model, but it is not yet used within the RattleGUI. It may be used to display the output of the RF (but it takes longer to generate than the modelitself!). Or it might only be used on export to PMML or SQL.
Usage
printRandomForests(model, models=NULL, include.class=NULL, format="")
Arguments
model a randomForest model.
models a list of integers limiting the models in MODEL that are displayed.
include.class limit the output to the specific class.
format possible values are "VB".
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
Examples
## Display a ruleset for a specific model amongst the 500.## Not run: printRandomForests(rfmodel, 5)
## Display a ruleset for specific models amongst the 500.## Not run: printRandomForests(rfmodel, c(5,10,15))
## Display a ruleset for each of the 500 models.## Not run: printRandomForests(rfmodel)
randomForest2Rules Generate accessible data structure of a randomForest model
Description
A randomForest model, by default, consists of 500 decision trees. This function walks through eachtree and generates a set of rules. This takes a considerable amount of time and is provided for usersto access the actual model, but it is not yet used within the Rattle GUI. It may be used to display theoutput of the RF (but it takes longer to generate than the model itself!). Or it might only be used onexport to PMML or SQL.
rattle 25
Usage
randomForest2Rules(model, models=NULL)
Arguments
model a randomForest model.
models a list of integers limiting the models in MODEL that are converted.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
Examples
## Generate a ruleset for a specific model amongst the 500.## Not run: randomForest2Rules(rfmodel, 5)
## Generate a ruleset for specific models amongst the 500.## Not run: randomForest2Rules(rfmodel, c(5,10,15))
## Generate a ruleset for each of the 500 models.## Not run: randomForest2Rules(rfmodel)
rattle Display the Rattle User Interface
Description
The Rattle user interface uses the RGtk2 package to present an intuitive point and click interface fordata mining, extensively building on the excellent collection of R packages by very many authorsfor data manipulation, exploration, analysis, and evaluation.
Usage
rattle(csvname=NULL, dataset=NULL, useGtkBuilder=TRUE)
Arguments
csvname the optional name of a CSV file to load into Rattle on startup.
dataset The optional name as a character string of a dataset to load into Rattle on startup.
useGtkBuilder if not supplied then automatically determine whether to use the new GtkBuilderrather than the deprecated libglade. A user can override the heuristic choice withTRUE or FALSE.
26 rattle.print.summary.multinom
Details
Refer to the Rattle home page in the URL below for a growing reference manual for using Rattle.
Whilst the underlying functionality of Rattle is built upon a vast collection of other R packages,Rattle itself provides a collection of utility functions used within Rattle. These are made availablethrough loading the rattle package into your R library. The See Also section lists these utilityfunctions that may be useful outside of Rattle.
Rattle can initialise some options using a .Rattle file if the folder in which Rattle is started. The cur-rently supported options are .RATTLE.DATA, .RATTLE.SCORE.IN, and .RATTLE.SCORE.OUT.
If the environment variable RATTLE\_DATA is defined then that is set as the default CSV file nameto load. Otherwise, if .RATTLE.DATA is defined then that will be used as the CSV file to load.Otherwise, if csvname is provided then that will be used.
Two environments are exported by Rattle, capturing the current rattle state (crs) and the currentrattle variables (crv).
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
See Also
evaluateRisk, genPlotTitleCmd, plotRisk.
Examples
# You can start rattle with a path to a csv file to pre-specify the# dataset. You then need to click Execute to load the data.
## Not run: rattle(system.file("csv", "weather.csv", package = "rattle"))
rattle.print.summary.multinom
Print information about a multinomial model
Description
Displays a textual reveiw of the performance of a multinom model.
Usage
rattle.print.summary.multinom(x, digits = x$digits, ...)
rattleInfo 27
Arguments
x An rpart object.
digits Number of digist to print for numbers.
... Other arguments.
Details
Print a summary of a multinom model. This is sipmly a modification of the print.summary.multinomfunction to add the number of entities!
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
rattleInfo Extract Rattle and related package information.
Description
Display system information, including versions of Rattle and R, operating system, and versions ofother packages used by Rattle. Useful for reporting bugs but also invisibly returns a list of packagesthat have updates available and can be passed to install.packages().
Usage
rattleInfo(all.dependencies=FALSE,include.not.installed=FALSE,include.not.available=FALSE,include.libpath=FALSE)
Arguments
all.dependencies
If TRUE then check the full dependency graph for Rattle and list all of thosepackages (which may take quite a few seconds to compute), or else just listthose key packages that Rattle Depends on and Suggests.
include.not.installed
If TRUE then make mention of any packages that are not installed, but are avail-able.
include.not.available
If TRUE then make mention of any packages that are not available from CRAN.include.libpath
If TRUE then list the library location where each package is installed.
28 rescale.by.group
Details
This is a support function to list useful information to provide the developers with information aboutthe system environment when running Rattle. It is intended to provide the information that is usefulin reporting bugs.
It also lists the currently installed version of a number of packages that Rattle makes use of as wellas checking for any updates available for those packages.
If updates are found then a command is generated and printed so that a user can simply copy andpaste the command to update the relevant packages. The function also invisibly returns the list ofpackages that can be updated, so that we can do something like: install.packages(rattleInfo()).
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
See Also
rattle.
rescale.by.group Transform a numeric vector by grouping it according to the values ofthe supplied factor and then rescaling within the groups.
Description
The numeric vector is remapped to integers from 0 to max-1, with any missing values mapped to themidpoint. Original idea from Tony Nolan. This will eventually be generalised to do the remappingusing any of the rescaling functions.
Usage
rescale.by.group(x, by=NULL, type = "irank", itop = 100)
Arguments
x The numeric vector to rescale.
by A factor of the same length as x used to define the groups.
type The type of rescaling to perform.
itop For an integer remapping this is the number of groups, so that the numeric valuesare maped to the integers from 0 to (max-1).
riskchart 29
Details
This Rattle support function, which is also useful by itself, provides a simple mechanism to rescalea numeric variable. Several rescalings are possible. The rescaling is done by first grouping theobservations according to the by argument.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
See Also
rattle.
riskchart Plot a risk chart
Description
Plots a Rattle Risk Chart for binary classification models using ggplot2. Such a chart has beendeveloped in a practical context to present the performance of data mining models to clients, plot-ting a caseload against performance, allowing a client to see the tradeoff between coverage andperformance.
Usage
riskchart(pr,ac,ri = NULL,title = "Risk Chart",title.size = 10,subtitle = NULL,caption = TRUE,show.legend = TRUE,optimal = NULL,optimal.label = "",chosen = NULL,chosen.label = "",include.baseline = TRUE,dev = "",filename = "",show.knots = NULL,show.lift = TRUE,show.precision = TRUE,
30 riskchart
show.maximal = TRUE,risk.name = "Risk",recall.name = "Recall",precision.name = "Precision",thresholds = NULL,legend.horiz = TRUE)
Arguments
pr The predicted class for each observation.
ac The actual class for each observation.
ri The risk class for each observation.
title the main title to place at the top of the plot.
title.size font size for the main title.
subtitle subtitle under the main title.
caption caption for the bottom right of plot.
show.legend whether to display the legend in the plot.
optimal a caseload (percentage or fraction) that represents an optimal performance pointwhich is also plotted. If instead the value is TRUE then the optimal point is iden-tified internally (maximum valud for (recall-casload)+(risk-caseload))and plotted.
optimal.label a string which is added to label the line drawn as the optimal point.
chosen a caseload (percentage or fraction) that represents a user chosen optimal perfor-mance point which is also plotted.
chosen.label a string which is added to label the line drawn as the chosen point.include.baseline
if TRUE (the default) then display the diagonal baseline.
dev a string which, if supplied, identifies a device type as the target for the plot. Thismight be one of wmf (for generating a Windows Metafile, but only available onMS/Windows), pdf, or png.
filename a string naming a file. If dev is not given then the filename extension is used toidentify the image format as one of those recognised by the dev argument.
show.knots a vector of caseload values at which a vertical line should be drawn. These mightcorrespond, for example, to individual paths through a decision tree, illustratingthe impact of each path on the caseload and performance.
show.lift whether to label the right axis with lift.
show.precision whether to show the precision plot.
show.maximal whether to show the maximal performance line.
risk.name a string used within the plot’s legend that gives a name to the risk. Often the riskis a dollar amount at risk from a fraud or from a bank loan point of view, so thedefault is Revenue.
riskchart 31
recall.name a string used within the plot’s legend that gives a name to the recall. The recallis often the percentage of cases that are positive hits, and in practise these mightcorrespond to known cases of fraud or reviews where some adjustment to per-haps a incom tax return or application for credit had to be made on reviewingthe case, and so the default is Adjustments.
precision.name a string used within the plot’s legend that gives a name to the precision. Acommon name for precision is Strike Rate, which is the default here.
thresholds whether to display scores along the top axis.
legend.horiz whether to display a horizontal legend.
Details
Caseload is the percentage of the entities in the dataset covered by the model at a particular prob-ability cutoff, so that with a cutoff of 0, all (100%) of the entities are covered by the model. Witha cutoff of 1 (0%) no entities are covered by the model. A diagonal line is drawn to represent abaseline random performance. Then the percentage of positive cases (the recall) covered for a par-ticular caseload is plotted, and optionally a measure of the percentage of the total risk that is alsocovered for a particular caseload may be plotted. Such a chart allows a user to select an appropriatetradeoff between caseload and performance. The charts are similar to ROC curves. The precision(i.e., strike rate) is also plotted.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
See Also
evaluateRisk, genPlotTitleCmd.
Examples
## Not run:
## Use rpart to build a decision tree.
library(rpart)
## Set up the data for modelling.
set.seed(42)ds <- weathertarget <- "RainTomorrow"risk <- "RISK_MM"ignore <- c("Date", "Location", risk)vars <- setdiff(names(ds), ignore)nobs <- nrow(ds)
32 savePlotToFile
form <- formula(paste(target, "~ ."))train <- sample(nobs, 0.7*nobs)test <- setdiff(seq_len(nobs), train)actual <- ds[test, target]risks <- ds[test, risk]
# Build the model.
model <- rpart(form, data=ds[train, vars])
## Obtain predictions.
predicted <- predict(model, ds[test, vars], type="prob")[,2]
## Plot the Risk Chart.
riskchart(predicted, actual, risks)
## End(Not run)
savePlotToFile Save a plot in some way
Description
For the current device, or for the device identified, save the plot displayed there in some way. This iseither saved to file, copied to the clipboard for pasting into other applications, or sent to the printerfor saving a hard copy.
Usage
savePlotToFile(file.name, dev.num=dev.cur())copyPlotToClipboard(dev.num=dev.cur())printPlot(dev.num=dev.cur())
Arguments
file.name Character string naming the file including the file name extension which is usedto specify the type of file to save.
dev.num A device number indicating which device to save.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
setupDataset 33
setupDataset Given specific contents of env add other dataset related variables.
Description
This rattle support function is used for encapsulating data mining objects. The supplied environmentis augmented with other data derived from the supplied data, such as a sample trianing dataset, listof numeric variables, and a formula for modelling.
Usage
setupDataset(env, seed=NULL)
Arguments
env the environment to modify.
seed optionally set the seed for repeatability.
Details
The supplied object (an environment) is assumed to also contain the variables data (a data frame),target (a character string naming the target variable), risk (a character string naming the risk vari-able), and inputs (a character vector naming all the input variables). This function then adds in thevariables vars (the variables used for modelling), numerics (the numeric vars within inputs), nobs(the number of observations), form (the formula for building models), train (a 70% training dataset).
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
treeset.randomForest Generate a representation of a tree in a Random Forest
Description
Often we want to view the actual trees built by a random forest. Although reviewing all 500 treesmight be a bit much, this function allows us to at least list them.
Usage
treeset.randomForest(model, n=1, root=1, format="R")
34 weather
Arguments
model a randomForest model.
n a specific tree to list.
root where to start the stree from, primarily for internal use.
format one of "R", "VB".
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
Examples
## Display a treeset for a specific model amongst the 500.## Not run: treeset.randomForests(rfmodel, 5)
weather Sample dataset of daily weather observations from Canberra airportin Australia.
Description
One year of daily weather observations collected from the Canberra airport in Australia was ob-tained from the Australian Commonwealth Bureau of Meteorology and processed to create thissample dataset for illustrating data mining using R and Rattle.
The data has been processed to provide a target variable RainTomorrow (whether there is rain onthe following day - No/Yes) and a risk variable RISK_MM (how much rain recorded in millimetres).Various transformations were performed on the source data. The dataset is quite small and is usefulonly for repeatable demonstration of various data science operations.
The source dataset is Copyright by the Australian Commonwealth Bureau of Meteorology and isprovided as part of the rattle package with permission.
Usage
weather
Format
The weather dataset is a data frame containing one year of daily observations from a single weatherstation (Canberra).
Date The date of observation (a Date object).
Location The common name of the location of the weather station.
weather 35
MinTemp The minimum temperature in degrees celsius.
MaxTemp The maximum temperature in degrees celsius.
Rainfall The amount of rainfall recorded for the day in mm.
Evaporation The so-called Class A pan evaporation (mm) in the 24 hours to 9am.
Sunshine The number of hours of bright sunshine in the day.
WindGustDir The direction of the strongest wind gust in the 24 hours to midnight.
WindGustSpeed The speed (km/h) of the strongest wind gust in the 24 hours to midnight.
Temp9am Temperature (degrees C) at 9am.
RelHumid9am Relative humidity (percent) at 9am.
Cloud9am Fraction of sky obscured by cloud at 9am. This is measured in "oktas", which are a unitof eigths. It records how many eigths of the sky are obscured by cloud. A 0 measure indicatescompletely clear sky whilst an 8 indicates that it is completely overcast.
WindSpeed9am Wind speed (km/hr) averaged over 10 minutes prior to 9am.
Pressure9am Atmospheric pressure (hpa) reduced to mean sea level at 9am.
Temp3pm Temperature (degrees C) at 3pm.
RelHumid3pm Relative humidity (percent) at 3pm.
Cloud3pm Fraction of sky obscured by cloud (in "oktas": eighths) at 3pm. See Cload9am for adescription of the values.
WindSpeed3pm Wind speed (km/hr) averaged over 10 minutes prior to 3pm.
Pressure3pm Atmospheric pressure (hpa) reduced to mean sea level at 3pm.
ChangeTemp Change in temperature.
ChangeTempDir Direction of change in temperature.
ChangeTempMag Magnitude of change in temperature.
ChangeWindDirect Direction of wind change.
MaxWindPeriod Period of maximum wind.
RainToday Integer: 1 if precipitation (mm) in the 24 hours to 9am exceeds 1mm, otherwise 0.
TempRange Difference between minimum and maximum temperatures (degrees C) in the 24 hoursto 9am.
PressureChange Change in pressure.
RISK_MM The amount of rain. A kind of measure of the "risk".
RainTomorrow The target variable. Did it rain tomorrow?
Author(s)
<Graham.Williams@togaware.com>
Source
The daily observations are available from http://www.bom.gov.au/climate/data. CopyrightCommonwealth of Australia 2010, Bureau of Meteorology.
Definitions adapted from http://www.bom.gov.au/climate/dwo/IDCJDW0000.shtml
36 whichNumerics
References
Package home page: http://rattle.togaware.com. Data source: http://www.bom.gov.au/climate/dwo/ and http://www.bom.gov.au/climate/data.
See Also
rattle.data::weatherAUS, audit.
whichNumerics Returns a list of the names of the numeric variables in a data frame.
Description
A rattle support function.
Usage
whichNumerics(data)
Arguments
data a data frame.
Author(s)
<Graham.Williams@togaware.com>
References
Package home page: http://rattle.togaware.com
Index
∗Topic aplotgenPlotTitleCmd, 16
∗Topic clustercenters.hclust, 9
∗Topic datasetsaudit, 6weather, 34
∗Topic dplotevaluateRisk, 14
∗Topic environmentrattle, 25rattleInfo, 27
∗Topic hplotcalcInitialDigitDistr, 8calculateAUC, 8drawTreeNodes, 11drawTreesAda, 12fancyRpartPlot, 15listTreesAda, 18modalvalue, 20plotOptimalLine, 20plotRisk, 21printRandomForests, 23randomForest2Rules, 24riskchart, 29savePlotToFile, 32treeset.randomForest, 33
∗Topic treeasRules, 4asRules.rpart, 5
acquireAuditData, 3asRules, 4asRules.rpart, 5audit, 4, 6, 36
binning, 7
calcInitialDigitDistr, 8calculateAUC, 8
centers.hclust, 9comcat, 10copyPlotToClipboard (savePlotToFile), 32crs (rattle), 25crv (rattle), 25
drawTreeNodes, 11drawTreesAda, 12
errorMatrix, 13eval, 16, 17evaluateRisk, 9, 14, 23, 26, 31
fancyRpartPlot, 15
genPlotTitleCmd, 16, 23, 26, 31ggVarImp, 17
listAdaVarsUsed, 18listTreesAda, 18listVersions, 19
modalvalue, 20
paste, 16plotOptimalLine, 20plotRisk, 14, 17, 21, 21, 26printPlot (savePlotToFile), 32printRandomForests, 23
randomForest2Rules, 24rattle, 4, 25, 28, 29rattle.print.summary.multinom, 26rattleInfo, 27rescale.by.group, 28riskchart, 29
savePlotToFile, 32setupDataset, 33
title, 16, 17
37
38 INDEX
treeset.randomForest, 33
weather, 34whichNumerics, 36write.csv, 19
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